Title : ( Bayesian nonparametric estimation of differential entropy for toroidal data )
Authors: Nakhaei Rad N , Mohammad Arashi , Bekker A , Sollie Millard ,Access to full-text not allowed by authors
Abstract
Entropy is a widely used information-theoretic measure; however, the estimation of entropy for observations of a periodic nature has not received much attention thus far. In this paper, we implement a Bayesian approach to obtain nonparametric estimates of Shannon entropy for toroidal data. This paves the way for its use in protein structure validation through an approach based on information theory and the distribution of backbone dihedral angles in the 3D structure of proteins. In addition, the kernel density estimation proposed in this paper can be applied alongside available parametric models for modeling toroidal observations. Simulation studies and the analysis of real datasets provide insights into this proposed method for protein structure validation.
Keywords
, Bayesian nonparamertic inferenceDirichlet infinite mixture modelModified Gibbs samplingPlug, in estimatesShannon entropy@article{paperid:1103408,
author = {نخعی راد، ن and Arashi, Mohammad and بکر، آ and میلارد، س},
title = {Bayesian nonparametric estimation of differential entropy for toroidal data},
journal = {Applied Mathematical Modelling},
year = {2025},
volume = {148},
number = {148},
month = {December},
issn = {0307-904X},
pages = {116241--116241},
numpages = {0},
keywords = {Bayesian nonparamertic inferenceDirichlet infinite mixture modelModified Gibbs samplingPlug-in estimatesShannon entropy},
}
%0 Journal Article
%T Bayesian nonparametric estimation of differential entropy for toroidal data
%A نخعی راد، ن
%A Arashi, Mohammad
%A بکر، آ
%A میلارد، س
%J Applied Mathematical Modelling
%@ 0307-904X
%D 2025